Deep learning-based human gunshot wounds classification.

IF 2.2 3区 医学 Q1 MEDICINE, LEGAL
Renato Queiroz Nogueira Lira, Luana Geovana Motta de Sousa, Maisa Luana Memoria Pinho, Renan Cesar Pinto da Silva Andrade de Lima, Pedro Garcia Freitas, Bruno Scholles Soares Dias, Andreia Cristina Breda de Souza, André Ferreira Leite
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引用次数: 0

Abstract

In this paper, we present a forensic perspective on classifying gunshot wound patterns using Deep Learning (DL). Although DL has revolutionized various medical specialties, such as automating tasks like medical image classification, its applications in forensic contexts have been limited despite the inherently visual nature of the field. This study investigates the application of DL techniques (59 architectures) to classify gunshot wounds in a forensic context, focusing on distinguishing between entry and exit wounds and determining the Medical-Legal Shooting Distance (MLSD), which classifies wounds as contact, close range, or distant, based on digital images from real crime scene cases. A comprehensive database was constructed with 2,551 images, including 1,883 entries and 668 exit wounds. The ResNet152 architecture demonstrated superior performance in both entry and exit wound classification and MLSD categorization. For the first task, achieved accuracy of 86.90% and an AUC of 82.09%. For MLSD, the ResNet152 showed an accuracy of 92.48% and AUC up to 94.36%, though sample imbalance affected the metrics. Our findings underscore the challenges of standardizing wound images due to varying capture conditions but reflect the practical realities of forensic work. This research highlights the significant potential of DL in enhancing forensic pathology practices, advocating for Artificial Intelligence (AI) as a supportive tool to complement human expertise in forensic investigations.

基于深度学习的人体枪伤分类。
在本文中,我们从法医角度介绍了如何利用深度学习(DL)对枪伤模式进行分类。尽管深度学习为各种医学专业带来了革命性的变化,例如实现了医学图像分类等任务的自动化,但其在法医领域的应用却十分有限,尽管该领域本身就具有视觉特性。本研究调查了应用 DL 技术(59 种架构)对法医环境中的枪伤进行分类的情况,重点是区分入口伤和出口伤,并根据真实犯罪现场案件的数字图像确定医学-法律射击距离(MLSD),将伤口分为接触伤、近距离伤或远距离伤。我们构建了一个包含 2,551 张图像的综合数据库,其中包括 1,883 个入口伤口和 668 个出口伤口。ResNet 152 架构在入口和出口伤口分类以及 MLSD 分类方面都表现出了卓越的性能。在第一项任务中,准确率达到 86.90%,AUC 为 82.09%。对于 MLSD,ResNet152 的准确率为 92.48%,AUC 高达 94.36%,尽管样本不平衡影响了指标。我们的研究结果凸显了由于采集条件不同而导致伤口图像标准化所面临的挑战,但也反映了法医工作的实际情况。这项研究强调了 DL 在提高法医病理学实践方面的巨大潜力,提倡将人工智能 (AI) 作为辅助工具,在法医调查中补充人类的专业知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.80
自引率
9.50%
发文量
165
审稿时长
1 months
期刊介绍: The International Journal of Legal Medicine aims to improve the scientific resources used in the elucidation of crime and related forensic applications at a high level of evidential proof. The journal offers review articles tracing development in specific areas, with up-to-date analysis; original articles discussing significant recent research results; case reports describing interesting and exceptional examples; population data; letters to the editors; and technical notes, which appear in a section originally created for rapid publication of data in the dynamic field of DNA analysis.
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